Introduces the spatial modeling and analytic techniques of geographic information science to data science students. The emphasis is on deep understanding of spatial data models and the analytic operations they enable. Recognizing remotely sensed data as a key data type within environmental data science, this course also introduces fundamental concepts and applications of remote sensing. In addition to this theoretical background, students become familiar with libraries, packages, and APIs that support spatial analysis in R.

No Prerequisites

4

Units

Letter

Grading

1, 2, 3

Passtime

Graduate students only

Level Limit

Environmental science

College
These majors only eds
ADAMS A R
No info found
BREN 3022
F
09:00 AM - 10:20 AM
7 / 36

Fall 2024 . Oliver R Y
BREN 1424
M
12:30 PM - 15:15 PM
See All
EDS 223 Oliver R Y Fall 2024 Total: 36
EDS 223 Oliver R Y Fall 2023 Total: 38
EDS 220
5 / 36 Enrolled
Working with Environmental Data
Galaz-Garcia
T R
09:30 AM - 10:45 AM
86.9% A
EDS 222
5 / 36 Enrolled
Statistics for Environmental Data Science
Czapanskiy M
M W
09:30 AM - 10:45 AM
69.4% A
EDS 242
5 / 32 Enrolled
Ethics & Bias in Environmental Data Science
T B A
M
12:30 PM - 13:45 PM
100.0% A